Title: Qin Zhang, Jon Gottschalck, Michelle L
1Intra-seasonal Variability in the NCEP Global
Ensemble Forecast System
- Qin Zhang, Jon Gottschalck, Michelle LHeureux,
Peitao Peng, Song Yang, Arun Kumar, and Wayne
Higgins
Acknowledgments Thanks Kyong-Hwan Seo, Zoltan
Toth, Yuejian Zhu, Bo Cui for discussion and
contribution.
http//www.cpc.ncep.noaa.gov/products/people/wd52q
z/mjoindex/MJO_INDEX.html
21. Introduction
- ? CPC is actively developing additional
MJO-related forecast tools to aid its operational
mission for the monitoring, assessment, and
prediction of the MJO and its associated impacts - ? We apply the Wheeler and Hendon (2004) MJO
identification methodology. Although this
approach for identification of the MJO is
well-established, it has only been recently that
it has been applied to dynamical model data at
several global operational centers - ? A description of our approach, modifications
necessary for practical realtime operational
considerations, and initial verification
statistics from both the GEFS and CFS data are
illustrated. - ? We present products using data from the Global
Ensemble Forecast System (GEFS) and Climate
Forecast System (CFS) - Wheeler and Hendon, 2004 An All-Season Realtime
Multivariate MJO Index Development of an Index
for Monitoring and Prediction. Monthly weather
Review,132, 1917-1932.
3CLIVAR MJO Experimental Prediction Project
NCEP
PSD/NCEP
UK Met
CMC
http//www.cdc.noaa.gov/MJO/Forecasts/index_phase.
html
42. MJO Identification
- The following steps are used to filter
variability to that associated with the MJO - a. Remove the first 3 harmonics of the seasonal
cycle - b. Remove ENSO by using the SST1 index (Bureau
of Meteorology Research Centre, Australia) - c. Remove mean of last 120 days
- d. Perform multivariate EOF analysis (U850, U200
and observed OLR) and determine EOFs using
historical data from 1979-2005 - e. Realtime OLR and NCEP GDAS/CDAS data (U850 and
U200) to project to multivariate EOF patterns
5Realtime MJO Monitoring and Forecast
63. Application to Operational Forecasts
- ? Calculated from the NCEP Global Ensemble
Forecast System (GEFS) 20 members - ? Use bias-corrected GEFS U850 and U200 wind data
and CDAS climatology for anomalies (Bo Cui et al.
2007) - ? 120 day mean is based on observations (the last
120 days from the reanalysis)
7Realtime MJO Monitoring and Forecast
After Bias correction
Before Bias correction
Big jump related to model bias
84. Example Products
OLR
U850
forecast 15 days
9Realtime MJO Monitoring and Forecast
OLR
850hPa wind and Chi
105. Verification
An Example of GEFS Forecast Verification
CFS
8 days
11 days
GEFS
11 days
12 days
116. Summary and Future Work
- ? Several experimental MJO tools are available
using GFS and CFS operational data and the GEFS
indicates greater skill than the CFS over the
limited validation periods - ? These tools will be used as input to the weekly
MJO update and Experimental Global Tropics
Benefits/Hazards Assessment routinely produced at
CPC - ? These tools will be incorporated as part of
CPCs MJO overall tool consolidation effort and
collaboration with other operational centers as
part of the US CLIVAR MJO working group - ? For future work OLR bias correction,
integration longer than 15 days, add uncertainty
information
127. Monsoon Indices Forecast (CPCs global
monsoon group)
Webster-Yang Monsoon Index U850-U200 (40-110ºE,
EQ-20ºN)
Australian Monsoon Index U850 (110-150ºE,
2.5-20ºS)
137. Monsoon Indices Forecast (CPCs global
monsoon group)
147. Monsoon Indices Forecast (CPCs global
monsoon group)
Dynamic Indian Monsoon Index U850 (40-80ºE,
5-15ºN) - U850 (70-90ºE, 20-30ºN)
Western North Pacific Monsoon Index U850(100-130ºE
, 5-15ºN)-U850(110-140ºE, 20-30ºN)